Emission Factors of Particulate Matter and Elemental Carbon for Crop

Copyright © 2010 American Chemical Society ...... Yifeng Xue, Zhen Zhou, Teng Nie, Kun Wang, Lei Nie, Tao Pan, Xiaoqing Wu, Hezhong Tian, Lianhong ...
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Environ. Sci. Technol. 2010, 44, 7157–7162

Emission Factors of Particulate Matter and Elemental Carbon for Crop Residues and Coals Burned in Typical Household Stoves in China GUOFENG SHEN,† YIFENG YANG,† W E I W A N G , † S H U T A O , * ,† C H E N Z H U , † YUJIA MIN,† MIAO XUE,† JUNNAN DING,† BIN WANG,† RONG WANG,† HUIZHONG SHEN,† WEI LI,† XILONG WANG,† AND ARMISTEAD G. RUSSELL‡ Laboratory for Earth Surface Processes, College of Urban and Environmental Sciences, Peking University, Beijing 100871, China, and School of Civil and Environmental Engineering, Georgia Institute of Technology, Atlanta, Georgia, 30332

Received April 22, 2010. Revised manuscript received July 22, 2010. Accepted August 9, 2010.

Both particulate matter (PM) and black carbon (BC) impact climate change and human health. Uncertainties in emission inventories of PM and BC are partially due to large variation of measured emission factors (EFs) and lack of EFs from developing countries. Although there is a debate whether thermaloptically measured elemental carbon (EC) may be referred to as BC, EC is often treated as the same mass of BC. In this study, EFs of PM (EFPM) and EC (EFEC) for 9 crop residues and 5 coals were measured in actual rural cooking and coal stoves using the carbon mass balance method. The dependence of the EFs on fuel properties and combustion conditions was investigated. It was found that the mean EFPM were 8.19 ( 4.27 and 3.17 ( 4.67 g/kg and the mean EFEC were 1.38 ( 0.70 and 0.23 ( 0.36 g/kg for crop residues and coals, respectively. PM with size less than 10 µm (PM10) from crop residues were dominated by particles of aerodynamic size ranging from 0.7 to 2.1 µm, while the most abundant size ranges of PM10 from coals were either from 0.7 to 2.1 µm or less than 0.7 µm. Of various fuel properties and combustion conditions tested, fuel moisture and modified combustion efficiency (MCE) were the most critical factors affecting EFPM and EFEC for crop residues. For coal combustion, EFPM were primarily affected by MCE and volatile matter, whereas EFEC were significantly influenced by ash content, volatile matter, heat value, and MCE. It was also found that EC emissions were significantly correlated with emissions of PM with size less than 0.4 µm.

Introduction Exposure to particulate matter (PM), especially fine PM, is associated with a wide range of diseases, including respiratory infection, lung cancer, and bronchus (1). Smoke from household fuel combustion is a large risk factor for people, especially females in developing countries (2). PM also * Corresponding author phone and fax: 0086-10-62751938; e-mail: [email protected]. † Peking University. ‡ Georgia Institute of Technology. 10.1021/es101313y

 2010 American Chemical Society

Published on Web 08/24/2010

impacts global climate change, and it was suggested that the Asian Brown Cloud was partly due to cook stove emission (3). As an important component of PM, black carbon (BC) is the third largest warming agent, following CO2 and methane (4). PM can be produced from direct combustion or atmospheric formation, whereas BC is mainly from combustion of carbon-based fuels (5). It is believed that BC is dominated by elemental graphitic carbon (6). Till now, many investigations on air quality or emission were based on thermal-optically measured elemental carbon (EC) instead of optically measured BC and treated them as the same mass (5, 7). Emission inventories for PM and BC are critical in the evaluation of how sources affect health and climate and have been continuously improved. Estimated emission of PM with size less than 10 µm (PM10) from Europe was 1823 Gg/year, of which 516 and 226 Gg/year were from households and noncombustion agricultural activities, respectively (8). Global PM2.5 (PM with Da less than 2.5 µm) emission from biomass burning was 58.3 Tg/year, of which 19.4 Tg/year was from domestic biomass combustion (9). BC emission was 2.54 Tg/year in Asia in 2000 (10) and 8.0 Tg/year globally in 1996 (5). For emission inventory development, statistics such as medians or means for emission factors (EFs) from the literature were usually adopted. Since the measured EFs often varied over orders of magnitude, variation in EFs was the primary source of the overall uncertainty of emission inventories (5, 10, 11). In addition, most reported EFs were measured in developed countries potentially biasing the global EF databank and likely leading to considerable underestimation of emission in developing countries (5, 10-12). Combustion of solid fuels, including crop residues and coals, in cooking stoves is among the most important sources of PM and BC, particularly in developing countries (5, 10, 11). It was estimated that the total quantities of crop residues combusted in field and indoor in China were 151 and 333 Tg in 2003, respectively (12). EFs of solid fuel varied widely due to variations in fuel types, fuel properties, and burning conditions, leading to large uncertainties in emission inventories (5, 10, 11). These tests were conducted either in stoves, (13-17) chambers, (18-21) or open-field (21-23). It has been shown that emissions from cooking stoves, from combustion chambers, or in open-field could be very different due to the differences in oxygen supply and circulation (7, 21-25). In addition, large difference in EFs among different kinds of solid fuels has been well documented (13, 14, 17). To improve process understanding and reduce uncertainty in emission estimation, it is necessary to quantify the influences of fuel properties and combustion conditions on the emission. With the largest population and economy, China consumes the largest portion of energy among all developing countries. The main objectives of this study were to measure and characterize PM and EC emissions from combustion of commonly used crop residues and coals in traditional stoves in China and to quantitatively evaluate the key factors affecting the emissions so as to have a better understanding of the variations of EFs of PM (EFPM) and EC (EFEC). The information provided is useful for improving emission inventories for PM and EC. Particle size distribution of the PM emission was also addressed since it is important in terms of environmental and human health impacts (1). VOL. 44, NO. 18, 2010 / ENVIRONMENTAL SCIENCE & TECHNOLOGY

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Methodology Stoves and Fuels. Two types of stoves widely used in rural China are brick wok stoves designed for large-size roundbottom woks and movable cast-iron stoves for small woks, tea pot or other cookware. Both of them are fire enclosed and have been used for centuries (26). During a period from 1980 to 1990, a campaign of disseminating fuel-saving stoves in rural China was undertaken to improve fuel efficiency of these stoves by using taller chimney, smaller firebox and fire door, and shorter distance between grid and cookware. It was estimated that the total numbers of the improved brick and cast-iron stoves used in China were 143 and 349 million in 2006, respectively (26). In northern China, wok stoves used by 175 million rural residences are connected to heating beds, known as “Kang” (27). In this study, a brick wok stove for crop residue burning was set up in a rural kitchen and a cast-iron stove for coal combustion was purchased from the local market in suburban Beijing. The exited smoke from the wok stove (passed a “Kang”) and cast-iron stove entered a mixing chamber (4.5 m3) with a build-in mixing fan. No further dilution was performed to avoid alterations in particulate mass loading and size distribution (24). The photos of the stoves are shown in the Supporting Information (S1). Nine crop residues which contributed more than 90% of the total crop residue combusted in China (rice 17.5%, wheat 19.5%, corn 39.1%, beans including soybean and horsebean 5.4%, cotton 2.4%, and oil crop including peanut, sesame, and rape 9.3%) (28) and five coals (two honeycomb briquettes from Beijing and Taiyuan and three chunk coals from Taiyuan and Yulin) were tested. The two honeycomb briquettes (15 cm diameter and 11 cm thick with 16 holes) were made of either anthracite with 4% volatile matter (VM) (from Beijing) or low volatile bituminous with 15% VM (from Taiyuan). The three raw chunk coals (from Taiyuan and Yulin) were all medium volatile bituminous (MVB) with VM between 23 and 29%. The fuel properties are listed in the Supporting Information (S2). Combustion Experiments. Combustion experiments were conducted following traditional methods used by rural residents. For coal combustion, coal (ca. 800-1000 g) in the stove was first ignited outdoor using small wood chips. After the coal was ignited, the stove was moved into the kitchen and set up under a stainless hood. For crop residue burning, preweighed fuel (ca. 500-700 g) was inserted into the stove chamber in 8-10 batches, and the burning lasted for 20-30 min. The ash was collected, weighed, and analyzed for carbon content. The combustion experiment for each type of fuel was conducted twice as duplicates. CO2 and CO were measured every 2 s with an online detector equipped with nondispersive infrared sensor. The equipment was calibrated before each experiment. Exact duration, fire temperature, smoke temperature, and relative humidity of smoke were recorded during the combustion (No significant difference among crop residues or among coals were observed). Emissions of PM and EC vary over the whole burning period of crop residues, which can be at least divided into flaming (with obvious fire) and smoldering (without observed fire) phases. Both CO and CO2 increased in the flaming phase and decreased during the smoldering phase (24). The difference in PM and EC emissions between the two phases was expected. Therefore, in addition to the whole burning cycle experiment, the two phases were tested individually in duplicates for all crop residues. Sample Collection and Measurement. Low-volume pumps (XQC-15E, Tianyue, China) with quartz fiber filters were used to collect PM (as total suspended particles) in the mixing chamber at a flow rate of 1.5 L/min. A nine stage cascade impactor (FA-3, Kangjie, China) with glass fiber filters was used to collect PM10 samples with different aerodynamic diameter (Da) ( 0.05), while EFPM of flaming phase (9.51 ( 3.02 g/kg) were significantly higher than those of smoldering one (7.09 ( 3.87 g/kg) (p < 0.05). In fact, smoke observed in smoldering phase was less thick than that in flaming phase. Although it was reported that PM number measured in flue gas during smoldering phase of biomass burning was lower than that of flaming phase, the fuel consumption rate were not measured for the two phases and the difference in EFPM between the two phases was not calculated by them (15, 18). Taking high variability in burning conditions into consid-

eration, the difference and the reasons causing such a difference should be further investigated. EFEC for Crop Residues and Coals. EFEC and EFOC for crop residue burning were 1.38 ( 0.70 and 1.45 ( 0.62 g/kg, respectively. It is interesting to compare our results with those reported by the others for a better understanding of wide variation of EF measurements. In general, our results are more or less similar to those measured using cooking stoves in the literature (25, 30). For example, Li et al. reported that EFEC and EFOC for crop residues in residential stoves were 0.09 - 0.94 and 0.85-3.21 g/kg, respectively (25). It is noted that the EFEC, but not EFOC, measured for residential stoves (both our study and those reported in the literature) were often higher than those measured in laboratory chambers or open field. It was reported that EFEC and EFOC were 0.08 and 6.2 g/kg for rice residue (20) and 0.35 and 1.9 g/kg for wheat (23) burned in laboratory chambers. EFEC and EFOC of open fire burning for wheat were 0.16-0.17 and 0.29-2.81 g/kg, respectively (23, 31). The difference is likely due to the restricted air supply and poor mixing in residential stoves compared with those in chambers and open field, resulting in relatively lower combustion efficiency and higher combustion temperature, which is favorable for EC formation (5). For coal combustion, EFEC varied from 0.006 for the anthracite coal (Beijing, honeycomb) to 0.83 ( 0.34 g/kg for the MVB chunk coals from Taiyuan. The mean and standard deviation of EFEC for coal was 0.23 ( 0.36 g/kg. Similarly, EFOC ranged from 0.007 to 1.00 g/kg for these coals. These results were comparable to those previously reported. For example, Chen et al. found EFEC measured in residential stoves ranged from 0.004 (anthracite) to 0.25 g/kg (MVB) for honeycomb briquette, and from 0.007 (anthracite) to 13.3 g/kg (MVB) for raw chunk coals (7). Size Distribution of PM10 from Crop Residue and Coal Combustion. For all crop residues tested in whole burning cycle, the distributions were similar and unimodal with the peak between 0.7 and 2.1 µm (S6). The similarity leads to small standard deviation of the overall distribution of all crop residues. On average, over 81% of the total mass of PM10 from crop residues was PM2.5 and approximately 12% was finer PM with Da less than 0.4 µm (PM0.4). Unlike crop residues, size distributions of PM10 from 5 coals fell into two distinguished categories (S6). For chunk coal from Taiyuan and chunk coal A from Yulin, size fraction between 0.7 and 2.1 µm contributed 49 ( 11% of the total mass of PM10, while the dominant fraction of two honeycomb coals and chunk coal B from Yulin was those with Da less than 0.7 µm, accounting for 52 ( 18 to 60 ( 1% of the total. For all coals tested, PM2.5 fractions were more than 77 ( 5% of the total. The domination of fine particles from coal combustion emissions was often reported (7).

Discussion Difference in EFPM among Crop Residues. Like those reported in the literature, the measured EFPM varied widely among crops and coals. A number of factors including fuel property, stove type, oxygen supply, combustion temperature, and fire management have been investigated for their influences on EFPM (13-23, 32-35). For example, EFPM for wheat and corn residues burned in household stoves ranged from 0.12 to 29.0 g/kg (13). Dhammapala et al. found that PM2.5 emission from wheat stubble burning decreased from 4.7 ( 0.4 to 0.8 ( 0.4 g/kg when the combustion efficiency increased from 92.2 to 97.7% (19). To address the factors affecting EFPM for crop residues, a number of factors including the measured contents of moisture, C, H, and N of the fuels as well as the calculated MCE, PIC, Rb, and Rc were assessed using a stepwise regression model. The detailed result is presented in S7. Of these parameters, moisture and MCE

FIGURE 1. Comparison between the measured and calculated EFPM for crop residue burning. The calculation was based on regression models with two independent variables of moisture and MCE. Three experiments including smoldering phase, flaming phase, and whole burning cycle are presented together. were significant (p < 0.05) in smoldering phase, flaming phase, and whole burning cycle and 63-83% of the total variations in EFPM can be explained by them. As such, the regression models can be applied to predict EFPM based on moisture and MCE and the predictions are plotted against the measurements for the three experiments in Figure 1. In smoldering phase, flaming phase, or whole burning cycle, moisture appeared to be the most important factor affecting PM emission. However, the influence of moisture on EFPM was complicated as documented in the literature. For example, it was found that PM concentrations were 34.2, 161, and 70.8 mg/m3 from combustion of firewood with moisture contents of 40%, respectively (35). The presence of water resulted in lower combustion efficiency, leading to a thick cloud of smoke particles (33). Slower formation and hence lower PM emission rate can also occur due to lower combustion temperature under higher moisture content (17). In addition, steam stripping or volatilization of organic compounds, which is fuel moisture dependent, can also result in the change of PM mass (36). In this study, significantly negative correlation (p ) 0.004) between moisture and EFPM was found. Since the crop residues were stored at the same condition for months prior to the experiment and the difference in moisture content was likely due to differences in fuel composition and texture. It will also be interesting to quantitatively test the influence of moisture on emission for the same crop residue in the future. The second important factor was MCE, which reflects the status of oxygen supply and combustion efficiency. It was found that similarly defined combustion efficiency explained more than 60% of variation in PM2.5 emission for wheat straw (19). It was indicated that although MCE is affected by moisture and other fuel properties, it is also related to nonfuel factors, such as air supply and mixing during combustion (20). Difference in EFPM among Coals. Larger difference in EFPM was observed between the honeycomb and chunk coals and even among the three chunk coals tested. It was reported that PM2.5 emissions from chunk coal combustion were 1.4-4 times of those from combustion of honeycomb made from the same coal (29). A number of parameters including moisture, ash content, VM, heat value, and MCE were tested for their influences on EFPM for coals using a stepwise regression. It was found that the two most significant factors affecting EFPM for coals were MCE (p ) 7.0 × 10-7) and VM (p ) 0.0003) and 92% of the variation was accountable (S7). Figure 2 presents the relationship between the modelpredicted and measured EFPM. Higher EFPM were also reported for coals with higher VM previously (7). It is also known that bituminous coal generally ranks first in both VM content and EFPM among various coals, followed by sub-bituminous and anthracite (7, 29). VOL. 44, NO. 18, 2010 / ENVIRONMENTAL SCIENCE & TECHNOLOGY

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FIGURE 2. Comparison between the measured and calculated EFPM for coals. The calculation was based on a stepwise regression model for predicting EFPM based on MCE and VM. Difference in Particle Size Distributions. As discussed previously, size distributions of PM10 from burning of various crop residues were similar to one another (Figure S2). Still, it was found that the minor difference among crops was moisture dependent. Of the 9 size stages, correlation coefficients between moisture and relative fractions of 6 stages with Da larger than 1.1 µm were positive (5 out of the 6 were significant at p < 0.05), while correlation coefficients between moisture and relative fractions of the remained 3 stages with Da less than 1.1 µm were negative (p ) 0.098, 0.041, and 0.054 for 0.7 - 1.1, 0.4-0.7, and